EN
Predicting Academic Achievement with Machine Learning Algorithms
Abstract
Education systems produce a large number of valuable data for all stakeholders. The processing of these educational data and making studies on the future of education based on the data reveal highly meaningful results. In this study, an insight was tried to be developed on the educational data collected from ninth-grade students by using data mining methods. The data contains demographic information about students and their families, studying routines, behaviours of attending learning activities, and their epistemological beliefs about science. Thus, this research aimed to solve a classification problem, two-class (successful or unsuccessful according to the exam result) was tried to be estimated from the collected data. In the study, the prediction accuracy of the supervised classification algorithms were compared and it was defined which variables were effective in the formation of classes. When the prediction accuracy of machine learning algorithms was compared, the findings indicated that the Neural Network algorithm (98.6%) had the highest score. The information gain coefficient of the variables was examined to determine the factors affecting the prediction accuracy. It was revealed that demographic variables of the family, scientific epistemological beliefs of the student, study routines and attitudes towards some courses affected the classification. It can be concluded that there was a relationship between these variables and academic success. Studies on these variables will support students' academic success.
Keywords
References
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Details
Primary Language
English
Subjects
Studies on Education
Journal Section
Research Article
Publication Date
September 30, 2020
Submission Date
July 24, 2020
Acceptance Date
September 23, 2020
Published in Issue
Year 2020 Volume: 3 Number: 3
APA
Yıldız, M., & Börekci, C. (2020). Predicting Academic Achievement with Machine Learning Algorithms. Journal of Educational Technology and Online Learning, 3(3), 372-392. https://doi.org/10.31681/jetol.773206
AMA
1.Yıldız M, Börekci C. Predicting Academic Achievement with Machine Learning Algorithms. JETOL. 2020;3(3):372-392. doi:10.31681/jetol.773206
Chicago
Yıldız, Muhammed, and Caner Börekci. 2020. “Predicting Academic Achievement With Machine Learning Algorithms”. Journal of Educational Technology and Online Learning 3 (3): 372-92. https://doi.org/10.31681/jetol.773206.
EndNote
Yıldız M, Börekci C (September 1, 2020) Predicting Academic Achievement with Machine Learning Algorithms. Journal of Educational Technology and Online Learning 3 3 372–392.
IEEE
[1]M. Yıldız and C. Börekci, “Predicting Academic Achievement with Machine Learning Algorithms”, JETOL, vol. 3, no. 3, pp. 372–392, Sept. 2020, doi: 10.31681/jetol.773206.
ISNAD
Yıldız, Muhammed - Börekci, Caner. “Predicting Academic Achievement With Machine Learning Algorithms”. Journal of Educational Technology and Online Learning 3/3 (September 1, 2020): 372-392. https://doi.org/10.31681/jetol.773206.
JAMA
1.Yıldız M, Börekci C. Predicting Academic Achievement with Machine Learning Algorithms. JETOL. 2020;3:372–392.
MLA
Yıldız, Muhammed, and Caner Börekci. “Predicting Academic Achievement With Machine Learning Algorithms”. Journal of Educational Technology and Online Learning, vol. 3, no. 3, Sept. 2020, pp. 372-9, doi:10.31681/jetol.773206.
Vancouver
1.Muhammed Yıldız, Caner Börekci. Predicting Academic Achievement with Machine Learning Algorithms. JETOL. 2020 Sep. 1;3(3):372-9. doi:10.31681/jetol.773206
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